Baseline validation of a bias-mitigated loan screening model based on the European Banking Authority's trust elements of Big Data & Advanced Analytics applications using Artificial Intelligence
Alessandro Danovi, Marzio Roma, Davide Meloni, Stefano Olgiati,, Fernando Metelli

TL;DR
This study validates a bias-mitigated AI-based loan screening model using minimal, non-discriminatory features, demonstrating high accuracy in detecting bad loans while aligning with EU trust principles.
Contribution
It introduces a novel loan screening model that uses minimal, non-discriminatory features and complies with EU trustworthy AI principles, with baseline validation results.
Findings
High sensitivity (0.91) in detecting bad loans
Strong specificity (0.90) in classifying exposures
Supports bias mitigation and consumer protection in credit risk assessment
Abstract
The goal of our 4-phase research project was to test if a machine-learning-based loan screening application (5D) could detect bad loans subject to the following constraints: a) utilize a minimal-optimal number of features unrelated to the credit history, gender, race or ethnicity of the borrower (BiMOPT features); b) comply with the European Banking Authority and EU Commission principles on trustworthy Artificial Intelligence (AI). All datasets have been anonymized and pseudoanonymized. In Phase 0 we selected a subset of 10 BiMOPT features out of a total of 84 features; in Phase I we trained 5D to detect bad loans in a historical dataset extracted from a mandatory report to the Bank of Italy consisting of 7,289 non-performing loans (NPLs) closed in the period 2010-2021; in Phase II we assessed the baseline performance of 5D on a distinct validation dataset consisting of an active…
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Taxonomy
TopicsFinancial Distress and Bankruptcy Prediction
MethodsTest
